Machine learning-assisted vibration analysis of graphene-origami metamaterial beams immersed in viscous fluids
Created by W.Langdon from
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- @Article{MURARI:2024:tws,
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author = "Bill Murari and Shaoyu Zhao and Yihe Zhang and
Jie Yang",
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title = "Machine learning-assisted vibration analysis of
graphene-origami metamaterial beams immersed in viscous
fluids",
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journal = "Thin-Walled Structures",
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volume = "197",
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pages = "111663",
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year = "2024",
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ISSN = "0263-8231",
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DOI = "doi:10.1016/j.tws.2024.111663",
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URL = "https://www.sciencedirect.com/science/article/pii/S0263823124001071",
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keywords = "genetic algorithms, genetic programming, Auxetic
material, Functionally graded beam, Vibration
characteristic, GP-assisted micromechanical model,
Dynamic response, Fluid",
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abstract = "This paper investigates the free and forced vibration
behaviours of functionally graded graphene
origami-enabled auxetic metamaterial (FG-GOEAM) beams
submerged in Newtonian fluids, with a particular focus
on the understanding of the influence of negative
Poisson's ratio (NPR) on the natural frequencies and
dynamic responses of the beam. To this end, a novel
accurate and efficient machine learning-assisted model
based on the genetic programming (GP) algorithm and
theoretical formulations is proposed. The deformation
of the beam is governed by the first-order shear
deformation theory, and numerical solutions are
obtained using the differential quadrature method (DQM)
together with Newmark-beta method. The fluid-structure
interaction (FSI) is described using a simplified model
based on the Navier-Stokes equation for fluid momentum.
The results obtained from the machine learning-assisted
model showcase its high accuracy and efficiency in
predicting the vibration behaviours of FG-GOEAM beams.
Extensive parametric studies reveal that the
incorporation of graphene origami (GOri) reinforcement
results in FG-GOEAM beams with superior NPR
characteristics compared to their metallic
counterparts, leading to significantly increased
fundamental frequencies and improved resistance to
dynamic deflections. The study demonstrates the
effectiveness of the machine learning model in
analysing and optimising the vibration characteristics
of metamaterial composite structures",
- }
Genetic Programming entries for
Bill Murari
Shaoyu Zhao
Yihe Zhang
Jie Yang
Citations